Fr. 64.00

Machine Learning In Computational Finance - Practical algorithms for building artificial intelligence applications

English, German · Paperback / Softback

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Description

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In the first part of the book practical algorithms for building optimal trading strategies are constructed. Both non-restricted and risk-adjusted (Sterling ratio and Sharp ratio) trading strategies are considered. Constructed optimal trading strategies can be used as training dataset for the AI application. In the next part of the book one particular type of Machine Learning - finding optimal linear separators - is considered, and combinatorial deterministic algorithm for computing minimum linear separator set in 2 dimensions is given. In the last part of the book presented efficient algorithms for preventing overfitting. Shape constrained regression is an accepted methodology to deal with overfitting. Algorithms for nonparametric shape constrained regression in the form of isotonic and unimodal regressions are given.

About the author










Victor Boyarshinov was born in the family of Russian military pilot. Victor grew up in a small village on the shore of Okhotsk Sea. After finishing high school he went to Novosibirsk State University to get MS degree in Math. Later he graduated from Rensselaer Polytechnic Institute with Ph.D. in Computer Science. Currently he lives in Vancouver.

Product details

Authors Victor Boyarshinov
Publisher LAP Lambert Academic Publishing
 
Languages English, German
Product format Paperback / Softback
Released 16.05.2012
 
EAN 9783659118890
ISBN 978-3-659-11889-0
No. of pages 88
Dimensions 150 mm x 219 mm x 5 mm
Weight 134 g
Subject Guides > Law, job, finance > Money, bank, stock market

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